利用剖面数据进行早期品位预测

S. Iqbal, Jerin Ishrat Natasha
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引用次数: 0

摘要

摘要-大学是声誉良好的高等教育机构,因此学生取得满意的成绩至关重要。经常可以看到,在最初的几个学期,许多学生从大学辍学,或者不得不努力完成课程。解决这个问题的一种方法是使用机器学习技术对学生的课程进行早期成绩预测,以便有需要的学生可以得到教师的特殊帮助。机器学习算法,如线性回归,决策树回归,高斯Naïve贝叶斯,决策树分类器已应用于数据集预测学生的结果,并比较其准确性。评估的个人资料数据来自孟加拉国达卡BRAC大学计算机科学系第十学期及以上的学生。决策树分类器技术被发现在预测等级方面表现最好,紧随其后的是决策树回归和线性回归
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Early Grade Prediction Using Profile Data
 Abstract —Universities are reputable institutions for higher education and therefore it is crucial that the students have satisfactory grades. Quite often it is seen that during the first few semesters many students dropout from the universities or have to struggle in order to complete the courses. One way to address the issue is early grade prediction using Machine Learning techniques, for the courses taken by the students so that the students in need can be provided special assistance by the instructors. Machine Learning Algorithms such as Linear Regression, Decision Tree Regression, Gaussian Naïve Bayes, Decision Tree Classifier have been applied on the data set to predict students’ results and to compare their accuracy. The evaluated profile data have been collected from the students of 10th semester or above of the Computer Science department, BRAC University, Dhaka, Bangladesh. The Decision Tree Classifier technique has been found to perform the best in predicting the grade, closely followed by Decision Tree Regression and Linear Regression has performed the
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